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Published:2025/12/17 8:36:23

ERIENet爆誕!暗闇(くらやみ)をブチ破る高画質化技術☆ 

超要約: 暗い場所(低照度環境)でも、デジカメ画質を爆上げ(向上)するスゴい技術! 新規事業で大活躍間違いなし!🚀

ギャル的キラキラポイント✨

処理速度(しょりそくど)爆速! 4K画質でも、動画みたいにサクサク処理できるんだって! 早すぎて草!😂 ● 暗闇に強い! ノイズ除去(ノイズじょきょ)&コントラストUPで、夜の写真もめっちゃ綺麗になるよ!🌙 ● スマホにも! 軽量化(けいりょうか)されてるから、スマホのカメラ性能も格段にUPしちゃう!📱

詳細解説

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ERIENet: An Efficient RAW Image Enhancement Network under Low-Light Environment

Jianan Wang / Yang Hong / Hesong Li / Tao Wang / Songrong Liu / Ying Fu

RAW images have shown superior performance than sRGB images in many image processing tasks, especially for low-light image enhancement. However, most existing methods for RAW-based low-light enhancement usually sequentially process multi-scale information, which makes it difficult to achieve lightweight models and high processing speeds. Besides, they usually ignore the green channel superiority of RAW images, and fail to achieve better reconstruction performance with good use of green channel information. In this work, we propose an efficient RAW Image Enhancement Network (ERIENet), which parallelly processes multi-scale information with efficient convolution modules, and takes advantage of rich information in green channels to guide the reconstruction of images. Firstly, we introduce an efficient multi-scale fully-parallel architecture with a novel channel-aware residual dense block to extract feature maps, which reduces computational costs and achieves real-time processing speed. Secondly, we introduce a green channel guidance branch to exploit the rich information within the green channels of the input RAW image. It increases the quality of reconstruction results with few parameters and computations. Experiments on commonly used low-light image enhancement datasets show that ERIENet outperforms state-of-the-art methods in enhancing low-light RAW images with higher effiency. It also achieves an optimal speed of over 146 frame-per-second (FPS) for 4K-resolution images on a single NVIDIA GeForce RTX 3090 with 24G memory.

cs / cs.CV